首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part B. Journal of engineering manufacture >TFT-LCD Mura defects automatic inspection system using linear regression diagnostic model
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TFT-LCD Mura defects automatic inspection system using linear regression diagnostic model

机译:使用线性回归诊断模型的TFT-LCD Mura缺陷自动检查系统

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摘要

The TFT-LCD panel is one of the most important and promising products in the recent years. Mura defects can be created on the display panel during its production. In this research, a linear regression diagnostic model is incorporated with digital image processing theory to automatically inspect for Mura defects. A bivariate polynomial regression model is used to simulate the brightness of background images that is used in the diagnosis of outliers and influential points. The partitions of the candidate Mura defect regions are segmented using Niblack's threshold criteria. The candidate Mura defects are further evaluated. The quantified level is defined in terms of concepts already reported in the literature. Based on Weber's law and a visual perception model, the just-noticeable intensity difference index of the Mura features can be obtained and it can be subsequently used to quantify the Mura defect level. With the obtained defect level, Mura defects can be identified for exactly labelling of the perfect and imperfect LCD panels. Experiments were performed on 13 TFT-LCD panels. There are ten bad panels and three good panels in these 13 samples as determined by human visual inspection. Each bad panel has at least one Mura defect. After the automated inspection process, the results showed that the proposed method could separate the good and bad panels accurately. Compared with human visual inspection, the Mura detection rate of the distinct size and shapes can attain over 90.9 per cent correct detection and the achieved correction rate of Mura defects on each panel can be improved by 100 per cent.
机译:TFT-LCD面板是近年来最重要和最有前途的产品之一。在生产过程中,显示​​屏面板上会产生Mura缺陷。在这项研究中,线性回归诊断模型与数字图像处理理论相结合,可以自动检查Mura缺陷。使用二元多项式回归模型来模拟背景图像的亮度,以用于离群值和影响点的诊断。使用Niblack的阈值标准对候选Mura缺陷区域的分区进行分割。进一步评估了候选Mura缺陷。量化水平是根据文献中已经报道的概念定义的。根据韦伯定律和视觉感知模型,可以得出Mura特征的刚度明显的强度差异指数,然后可以将其用于量化Mura缺陷级别。利用所获得的缺陷水平,可以识别出Mura缺陷,以准确标记完美和不完美的LCD面板。在13个TFT-LCD面板上进行了实验。通过肉眼检查确定,这13个样品中有10个不良面板和3个良好面板。每个坏面板至少有一个Mura缺陷。经过自动检查过程,结果表明所提方法可以准确区分好面板和坏面板。与人的目测检查相比,不同大小和形状的Mura检出率可以达到90.9%以上的正确检测率,并且每个面板上达到的Mura缺陷校正率可以提高100%。

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